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gaoqiong
lm-evaluation-harness
Commits
a2af2101
Unverified
Commit
a2af2101
authored
Jul 12, 2024
by
Yen-Ting Lin
Committed by
GitHub
Jul 12, 2024
Browse files
Merge branch 'EleutherAI:main' into main
parents
82cb25c1
d5f39bf8
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lm_eval/tasks/leaderboard/bbh_mc/boolean_expressions.yaml
lm_eval/tasks/leaderboard/bbh_mc/boolean_expressions.yaml
+16
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lm_eval/tasks/leaderboard/bbh_mc/causal_judgement.yaml
lm_eval/tasks/leaderboard/bbh_mc/causal_judgement.yaml
+64
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lm_eval/tasks/leaderboard/bbh_mc/date_understanding.yaml
lm_eval/tasks/leaderboard/bbh_mc/date_understanding.yaml
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lm_eval/tasks/leaderboard/bbh_mc/disambiguation_qa.yaml
lm_eval/tasks/leaderboard/bbh_mc/disambiguation_qa.yaml
+50
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lm_eval/tasks/leaderboard/bbh_mc/formal_fallacies.yaml
lm_eval/tasks/leaderboard/bbh_mc/formal_fallacies.yaml
+57
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lm_eval/tasks/leaderboard/bbh_mc/geometric_shapes.yaml
lm_eval/tasks/leaderboard/bbh_mc/geometric_shapes.yaml
+86
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lm_eval/tasks/leaderboard/bbh_mc/hyperbaton.yaml
lm_eval/tasks/leaderboard/bbh_mc/hyperbaton.yaml
+34
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lm_eval/tasks/leaderboard/bbh_mc/logical_deduction_five_objects.yaml
...ks/leaderboard/bbh_mc/logical_deduction_five_objects.yaml
+52
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lm_eval/tasks/leaderboard/bbh_mc/logical_deduction_seven_objects.yaml
...s/leaderboard/bbh_mc/logical_deduction_seven_objects.yaml
+52
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lm_eval/tasks/leaderboard/bbh_mc/logical_deduction_three_objects.yaml
...s/leaderboard/bbh_mc/logical_deduction_three_objects.yaml
+52
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lm_eval/tasks/leaderboard/bbh_mc/movie_recommendation.yaml
lm_eval/tasks/leaderboard/bbh_mc/movie_recommendation.yaml
+54
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lm_eval/tasks/leaderboard/bbh_mc/navigate.yaml
lm_eval/tasks/leaderboard/bbh_mc/navigate.yaml
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lm_eval/tasks/leaderboard/bbh_mc/object_counting.yaml
lm_eval/tasks/leaderboard/bbh_mc/object_counting.yaml
+20
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lm_eval/tasks/leaderboard/bbh_mc/penguins_in_a_table.yaml
lm_eval/tasks/leaderboard/bbh_mc/penguins_in_a_table.yaml
+68
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lm_eval/tasks/leaderboard/bbh_mc/reasoning_about_colored_objects.yaml
...s/leaderboard/bbh_mc/reasoning_about_colored_objects.yaml
+116
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lm_eval/tasks/leaderboard/bbh_mc/ruin_names.yaml
lm_eval/tasks/leaderboard/bbh_mc/ruin_names.yaml
+50
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lm_eval/tasks/leaderboard/bbh_mc/salient_translation_error_detection.yaml
...aderboard/bbh_mc/salient_translation_error_detection.yaml
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lm_eval/tasks/leaderboard/bbh_mc/snarks.yaml
lm_eval/tasks/leaderboard/bbh_mc/snarks.yaml
+45
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lm_eval/tasks/leaderboard/bbh_mc/sports_understanding.yaml
lm_eval/tasks/leaderboard/bbh_mc/sports_understanding.yaml
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lm_eval/tasks/leaderboard/bbh_mc/temporal_sequences.yaml
lm_eval/tasks/leaderboard/bbh_mc/temporal_sequences.yaml
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Email patch
lm_eval/tasks/leaderboard/bbh_mc/boolean_expressions.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
boolean_expressions
description
:
'
Evaluate
the
result
of
a
random
Boolean
expression.
'
doc_to_choice
:
[
"
False"
,
"
True"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
not ( ( not not True ) ) is
target
:
'
False'
-
input
:
True and False and not True and True is
target
:
'
False'
-
input
:
not not ( not ( False ) ) is
target
:
'
True'
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_boolean_expressions
lm_eval/tasks/leaderboard/bbh_mc/causal_judgement.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
causal_judgement
description
:
'
Answer
questions
about
causal
attribution.
'
doc_to_choice
:
[
"
Yes"
,
"
No"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
How
would
a
typical
person
answer
each
of
the
following
questions
about
causation?
Frank
T.,
had
an
ongoing
dispute
with
his
neighbor
over
a
stretch
of
land
and
one
day
decided
to
shoot
his
neighbor
in
the
body.
Frank
T.
had
no
experience
with
guns,
his
hand
slipped
on
the
barrel
of
the
gun,
and
the
shot
went
wild.
Nonetheless,
the
bullet
bounced
off
a
large
boulder
several
feet
away
and
hit
the
neighbor'
'
s
body,
causing
significant
injury.
Did
Frank
T.
intentionally
shoot
his
neighbor
in
the
body?
Options:
-
Yes
-
No'
target
:
'
No'
-
input
:
'
How
would
a
typical
person
answer
each
of
the
following
questions
about
causation?
Suzy
and
Billy
are
working
on
a
project
that
is
very
important
for
our
nation'
'
s
security.
The
boss
tells
them
both:
"Be
sure
that
you
are
here
at
exactly
9
am.
It
is
absolutely
essential
that
you
arrive
at
that
time."
Both
Billy
and
Suzy
arrive
at
9
am.
As
it
happens,
there
was
a
motion
detector
installed
in
the
room
where
they
arrived.
The
motion
detector
was
set
up
to
be
triggered
if
at
least
one
person
appeared
in
the
room
at
the
same
time.
So
the
motion
detector
went
off.
Did
Billy
cause
the
motion
detector
to
go
off?
Options:
-
Yes
-
No'
target
:
'
Yes'
-
input
:
'
How
would
a
typical
person
answer
each
of
the
following
questions
about
causation?
George
and
his
sister
Lena
reunite
at
their
parents'
'
house
for
Thanksgiving.
Whereas
George
just
got
into
medical
school,
Lena
is
unhappy
in
her
marriage
and
recently
lost
her
job.
Over
the
course
of
the
day,
George
and
Lena
get
into
a
number
of
heated
arguments.
Later
in
the
afternoon
they
play
a
game
of
darts.
They
split
the
first
two
games,
and
the
third
game
is
close
until
the
end.
Who
will
win
comes
down
to
George'
'
s
last
shot.
If
he
hits
a
high
point
region,
he
wins;
if
he
hits
a
low
point
region,
Lena
wins.
George
thinks
of
the
difficult
time
Lena
is
having,
and
he
really
wants
to
let
her
win.
He
aims
the
dart
at
the
low
point
region.
He
sets
up
his
shot
and
the
dart
lands
in
the
low
point
region.
After
his
shot,
Lena
wins
the
game
and
is
very
happy.
Did
George
hit
the
low
point
region
intentionally?
Options:
-
Yes
-
No'
target
:
'
Yes'
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_causal_judgement
lm_eval/tasks/leaderboard/bbh_mc/date_understanding.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
date_understanding
description
:
'
Infer
the
date
from
context.
'
doc_to_choice
:
[
"
(A)"
,
"
(B)"
,
"
(C)"
,
"
(D)"
,
"
(E)"
,
"
(F)"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
Today
is
Christmas
Eve
of
1937.
What
is
the
date
10
days
ago
in
MM/DD/YYYY?
Options:
(A)
12/14/2026
(B)
12/14/1950
(C)
12/14/2007
(D)
12/14/1937
(E)
07/14/1938
(F)
12/14/1988'
target
:
(D)
-
input
:
'
Tomorrow
is
11/12/2019.
What
is
the
date
one
year
ago
from
today
in
MM/DD/YYYY?
Options:
(A)
09/04/2018
(B)
11/11/2018
(C)
08/25/2018
(D)
11/02/2018
(E)
11/04/2018'
target
:
(B)
-
input
:
'
Jane
and
John
married
on
Jan
2,
1958.
It
is
their
5-year
anniversary
today.
What
is
the
date
tomorrow
in
MM/DD/YYYY?
Options:
(A)
01/11/1961
(B)
01/03/1963
(C)
01/18/1961
(D)
10/14/1960
(E)
01/03/1982
(F)
12/03/1960'
target
:
(B)
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_date_understanding
lm_eval/tasks/leaderboard/bbh_mc/disambiguation_qa.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
disambiguation_qa
description
:
'
Clarify
the
meaning
of
sentences
with
ambiguous
pronouns.
'
doc_to_choice
:
[
"
(A)"
,
"
(B)"
,
"
(C)"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
In
the
following
sentences,
explain
the
antecedent
of
the
pronoun
(which
thing
the
pronoun
refers
to),
or
state
that
it
is
ambiguous.
Sentence:
The
chief
told
the
counselor
that
they
took
the
day
off.
Options:
(A)
The
chief
took
the
day
off
(B)
The
counselor
took
the
day
off
(C)
Ambiguous'
target
:
(A)
-
input
:
'
In
the
following
sentences,
explain
the
antecedent
of
the
pronoun
(which
thing
the
pronoun
refers
to),
or
state
that
it
is
ambiguous.
Sentence:
The
manager
sent
a
message
to
the
secretary,
but
he
didn'
'
t
reply
yet.
Options:
(A)
The
secretary
didn'
'
t
reply
yet
(B)
The
manager
didn'
'
t
reply
yet
(C)
Ambiguous'
target
:
(A)
-
input
:
'
In
the
following
sentences,
explain
the
antecedent
of
the
pronoun
(which
thing
the
pronoun
refers
to),
or
state
that
it
is
ambiguous.
Sentence:
Bailey
will
plan
to
meet
the
director
at
his
office
Options:
(A)
It
will
be
Bailey'
'
s
office
(B)
It
will
be
the
director'
'
s
office
(C)
Ambiguous'
target
:
(C)
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_disambiguation_qa
lm_eval/tasks/leaderboard/bbh_mc/formal_fallacies.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
formal_fallacies
description
:
'
Distinguish
deductively
valid
arguments
from
formal
fallacies.
'
doc_to_choice
:
[
"
valid"
,
"
invalid"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
"It
is
not
always
easy
to
see
who
is
related
to
whom
--
and
in
which
ways.
The
following
argument
pertains
to
this
question:
To
begin
with,
Lesley
is
a
close
friend
of
Fernando.
Moreover,
being
a
close
friend
of
Fernando
or
a
schoolmate
of
Lowell
is
sufficient
for
being
a
great-grandfather
of
Leroy.
It
follows
that
Lesley
is
a
great-grandfather
of
Leroy."
Is
the
argument,
given
the
explicitly
stated
premises,
deductively
valid
or
invalid?
Options:
-
valid
-
invalid'
target
:
valid
-
input
:
'
"It
is
not
always
easy
to
see
who
is
related
to
whom
--
and
in
which
ways.
The
following
argument
pertains
to
this
question:
Whoever
is
not
a
great-grandfather
of
Clyde
is
a
stepbrother
of
Brian.
Being
an
ancestor
of
Dana
is
sufficient
for
not
being
a
great-grandfather
of
Clyde.
We
may
conclude:
Everyone
who
is
an
ancestor
of
Dana
is
a
stepbrother
of
Brian,
too."
Is
the
argument,
given
the
explicitly
stated
premises,
deductively
valid
or
invalid?
Options:
-
valid
-
invalid'
target
:
valid
-
input
:
'
"It
is
not
always
easy
to
grasp
who
is
consuming
which
products.
The
following
argument
pertains
to
this
question:
Every
infrequent
user
of
Paul
Mitchell
shampoo
is
either
a
rare
consumer
of
Nioxin
shampoo
or
a
loyal
buyer
of
Caress
soap,
or
both.
No
regular
consumer
of
Lush
soap
is
a
rare
consumer
of
Nioxin
shampoo
and,
in
the
same
time,
a
loyal
buyer
of
Caress
soap.
It
follows
that
whoever
is
an
infrequent
user
of
Paul
Mitchell
shampoo
is
not
a
regular
consumer
of
Lush
soap."
Is
the
argument,
given
the
explicitly
stated
premises,
deductively
valid
or
invalid?
Options:
-
valid
-
invalid'
target
:
invalid
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_formal_fallacies
lm_eval/tasks/leaderboard/bbh_mc/geometric_shapes.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
geometric_shapes
description
:
'
Name
geometric
shapes
from
their
SVG
paths.
'
doc_to_choice
:
[
"
(A)"
,
"
(B)"
,
"
(C)"
,
"
(D)"
,
"
(E)"
,
"
(F)"
,
"
(G)"
,
"
(H)"
,
"
(I)"
,
"
(J)"
,
"
(K)"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
This
SVG
path
element
<path
d="M
31.00,73.00
L
32.00,59.00
L
44.00,50.00
L
49.00,41.00
L
64.00,37.00
L
71.00,55.00
L
64.00,76.00
L
52.00,61.00
L
31.00,73.00"/>
draws
a
Options:
(A)
circle
(B)
heptagon
(C)
hexagon
(D)
kite
(E)
line
(F)
octagon
(G)
pentagon
(H)
rectangle
(I)
sector
(J)
triangle'
target
:
(F)
-
input
:
'
This
SVG
path
element
<path
d="M
14.19,26.04
L
51.43,39.21
L
58.44,36.69
L
56.63,30.17
L
48.53,26.66
L
14.19,26.04"/>
draws
a
Options:
(A)
circle
(B)
heptagon
(C)
hexagon
(D)
kite
(E)
line
(F)
octagon
(G)
pentagon
(H)
rectangle
(I)
sector
(J)
triangle'
target
:
(G)
-
input
:
'
This
SVG
path
element
<path
d="M
41.00,43.00
L
37.00,34.00
L
41.00,33.00
L
45.00,34.00
L
41.00,43.00"/>
draws
a
Options:
(A)
circle
(B)
heptagon
(C)
hexagon
(D)
kite
(E)
line
(F)
octagon
(G)
pentagon
(H)
rectangle
(I)
sector
(J)
triangle'
target
:
(D)
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_geometric_shapes
lm_eval/tasks/leaderboard/bbh_mc/hyperbaton.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
hyperbaton
description
:
'
Order
adjectives
correctly
in
English
sentences.
'
doc_to_choice
:
[
"
(A)"
,
"
(B)"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
Which
sentence
has
the
correct
adjective
order:
Options:
(A)
rubber
terrible
ship
(B)
terrible
rubber
ship'
target
:
(B)
-
input
:
'
Which
sentence
has
the
correct
adjective
order:
Options:
(A)
repulsive
small
Brazilian
exercise
ship
(B)
Brazilian
repulsive
exercise
small
ship'
target
:
(A)
-
input
:
'
Which
sentence
has
the
correct
adjective
order:
Options:
(A)
blue
gold
wonderful
square
shoe
(B)
wonderful
square
blue
gold
shoe'
target
:
(B)
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_hyperbaton
lm_eval/tasks/leaderboard/bbh_mc/logical_deduction_five_objects.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
logical_deduction_five_objects
description
:
'
A
logical
deduction
task
which
requires
deducing
the
order
of
a
sequence
of
objects.
'
doc_to_choice
:
[
"
(A)"
,
"
(B)"
,
"
(C)"
,
"
(D)"
,
"
(E)"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
The
following
paragraphs
each
describe
a
set
of
three
objects
arranged
in
a
fixed
order.
The
statements
are
logically
consistent
within
each
paragraph.
In
a
golf
tournament,
there
were
three
golfers:
Amy,
Eli,
and
Eve.
Eve
finished
above
Amy.
Eli
finished
below
Amy.
Options:
(A)
Amy
finished
last
(B)
Eli
finished
last
(C)
Eve
finished
last'
target
:
(B)
-
input
:
'
The
following
paragraphs
each
describe
a
set
of
three
objects
arranged
in
a
fixed
order.
The
statements
are
logically
consistent
within
each
paragraph.
On
a
shelf,
there
are
three
books:
a
white
book,
a
green
book,
and
an
orange
book.
The
green
book
is
to
the
right
of
the
white
book.
The
orange
book
is
the
rightmost.
Options:
(A)
The
white
book
is
the
leftmost
(B)
The
green
book
is
the
leftmost
(C)
The
orange
book
is
the
leftmost'
target
:
(A)
-
input
:
'
The
following
paragraphs
each
describe
a
set
of
three
objects
arranged
in
a
fixed
order.
The
statements
are
logically
consistent
within
each
paragraph.
On
a
shelf,
there
are
three
books:
a
red
book,
a
gray
book,
and
a
white
book.
The
white
book
is
to
the
left
of
the
gray
book.
The
red
book
is
the
second
from
the
left.
Options:
(A)
The
red
book
is
the
leftmost
(B)
The
gray
book
is
the
leftmost
(C)
The
white
book
is
the
leftmost'
target
:
(C)
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_logical_deduction_five_objects
lm_eval/tasks/leaderboard/bbh_mc/logical_deduction_seven_objects.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
logical_deduction_seven_objects
description
:
'
A
logical
deduction
task
which
requires
deducing
the
order
of
a
sequence
of
objects.
'
doc_to_choice
:
[
"
(A)"
,
"
(B)"
,
"
(C)"
,
"
(D)"
,
"
(E)"
,
"
(F)"
,
"
(G)"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
The
following
paragraphs
each
describe
a
set
of
three
objects
arranged
in
a
fixed
order.
The
statements
are
logically
consistent
within
each
paragraph.
In
a
golf
tournament,
there
were
three
golfers:
Amy,
Eli,
and
Eve.
Eve
finished
above
Amy.
Eli
finished
below
Amy.
Options:
(A)
Amy
finished
last
(B)
Eli
finished
last
(C)
Eve
finished
last'
target
:
(B)
-
input
:
'
The
following
paragraphs
each
describe
a
set
of
three
objects
arranged
in
a
fixed
order.
The
statements
are
logically
consistent
within
each
paragraph.
On
a
shelf,
there
are
three
books:
a
white
book,
a
green
book,
and
an
orange
book.
The
green
book
is
to
the
right
of
the
white
book.
The
orange
book
is
the
rightmost.
Options:
(A)
The
white
book
is
the
leftmost
(B)
The
green
book
is
the
leftmost
(C)
The
orange
book
is
the
leftmost'
target
:
(A)
-
input
:
'
The
following
paragraphs
each
describe
a
set
of
three
objects
arranged
in
a
fixed
order.
The
statements
are
logically
consistent
within
each
paragraph.
On
a
shelf,
there
are
three
books:
a
red
book,
a
gray
book,
and
a
white
book.
The
white
book
is
to
the
left
of
the
gray
book.
The
red
book
is
the
second
from
the
left.
Options:
(A)
The
red
book
is
the
leftmost
(B)
The
gray
book
is
the
leftmost
(C)
The
white
book
is
the
leftmost'
target
:
(C)
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_logical_deduction_seven_objects
lm_eval/tasks/leaderboard/bbh_mc/logical_deduction_three_objects.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
logical_deduction_three_objects
description
:
'
A
logical
deduction
task
which
requires
deducing
the
order
of
a
sequence
of
objects.
'
doc_to_choice
:
[
"
(A)"
,
"
(B)"
,
"
(C)"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
The
following
paragraphs
each
describe
a
set
of
three
objects
arranged
in
a
fixed
order.
The
statements
are
logically
consistent
within
each
paragraph.
In
a
golf
tournament,
there
were
three
golfers:
Amy,
Eli,
and
Eve.
Eve
finished
above
Amy.
Eli
finished
below
Amy.
Options:
(A)
Amy
finished
last
(B)
Eli
finished
last
(C)
Eve
finished
last'
target
:
(B)
-
input
:
'
The
following
paragraphs
each
describe
a
set
of
three
objects
arranged
in
a
fixed
order.
The
statements
are
logically
consistent
within
each
paragraph.
On
a
shelf,
there
are
three
books:
a
white
book,
a
green
book,
and
an
orange
book.
The
green
book
is
to
the
right
of
the
white
book.
The
orange
book
is
the
rightmost.
Options:
(A)
The
white
book
is
the
leftmost
(B)
The
green
book
is
the
leftmost
(C)
The
orange
book
is
the
leftmost'
target
:
(A)
-
input
:
'
The
following
paragraphs
each
describe
a
set
of
three
objects
arranged
in
a
fixed
order.
The
statements
are
logically
consistent
within
each
paragraph.
On
a
shelf,
there
are
three
books:
a
red
book,
a
gray
book,
and
a
white
book.
The
white
book
is
to
the
left
of
the
gray
book.
The
red
book
is
the
second
from
the
left.
Options:
(A)
The
red
book
is
the
leftmost
(B)
The
gray
book
is
the
leftmost
(C)
The
white
book
is
the
leftmost'
target
:
(C)
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_logical_deduction_three_objects
lm_eval/tasks/leaderboard/bbh_mc/movie_recommendation.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
movie_recommendation
description
:
'
Recommend
movies
similar
to
the
given
list
of
movies.
'
doc_to_choice
:
[
"
(A)"
,
"
(B)"
,
"
(C)"
,
"
(D)"
,
"
(E)"
,
"
(F)"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
Find
a
movie
similar
to
Star
Wars
Episode
IV
-
A
New
Hope,
Indiana
Jones
and
the
Last
Crusade,
Star
Wars
Episode
V
-
The
Empire
Strikes
Back,
The
Big
Lebowski:
Options:
(A)
Tetsuo
(B)
the
Ironman
(C)
The
Princess
Bride
(D)
The
Barkley
Marathons
The
Race
That
Eats
Its
Young
(E)
Bug'
target
:
(C)
-
input
:
'
Find
a
movie
similar
to
Twister,
The
Silence
of
the
Lambs,
Independence
Day,
Braveheart:
Options:
(A)
They
Shoot
Horses
(B)
Don'
'
t
They
(C)
Forrest
Gump
(D)
The
Salton
Sea
(E)
Extreme
Days'
target
:
(C)
-
input
:
'
Find
a
movie
similar
to
Minority
Report,
Total
Recall,
Inside
Out,
Forrest
Gump:
Options:
(A)
Phenomena
(B)
Lilting
(C)
Catwoman
(D)
Edge
of
Tomorrow'
target
:
(D)
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_movie_recommendation
lm_eval/tasks/leaderboard/bbh_mc/navigate.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
navigate
description
:
'
Given
a
series
of
navigation
instructions,
determine
whether
one
would
end
up
back
at
the
starting
point.
'
doc_to_choice
:
[
"
Yes"
,
"
No"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
If
you
follow
these
instructions,
do
you
return
to
the
starting
point?
Turn
left.
Turn
around.
Turn
left.
Take
7
steps.
Take
2
steps.
Take
4
steps.
Take
8
steps.
Options:
-
Yes
-
No'
target
:
'
No'
-
input
:
'
If
you
follow
these
instructions,
do
you
return
to
the
starting
point?
Turn
around.
Take
1
step.
Take
6
steps.
Turn
around.
Take
6
steps.
Take
9
steps.
Take
1
step.
Options:
-
Yes
-
No'
target
:
'
No'
-
input
:
'
If
you
follow
these
instructions,
do
you
return
to
the
starting
point?
Always
face
forward.
Take
2
steps
right.
Take
9
steps
left.
Take
7
steps
right.
Options:
-
Yes
-
No'
target
:
'
Yes'
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_navigate
lm_eval/tasks/leaderboard/bbh_mc/object_counting.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
object_counting
description
:
'
Questions
that
involve
enumerating
objects
and
asking
the
model
to
count
them.
'
doc_to_choice
:
[
"
0"
,
"
1"
,
"
2"
,
"
3"
,
"
4"
,
"
5"
,
"
6"
,
"
7"
,
"
8"
,
"
9"
,
"
10"
,
"
11"
,
"
12"
,
"
13"
,
"
14"
,
"
15"
,
"
16"
,
"
17"
,
"
18"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
I have a blackberry, a clarinet, a nectarine, a plum, a strawberry, a banana,
a flute, an orange, and a violin. How many fruits do I have?
target
:
'
6'
-
input
:
I have an orange, a raspberry, two peaches, a blackberry, an apple, a grape,
a nectarine, and three plums. How many fruits do I have?
target
:
'
11'
-
input
:
I have a lettuce head, a head of broccoli, an onion, a stalk of celery,
two carrots, a garlic, and a yam. How many vegetables do I have?
target
:
'
8'
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_object_counting
lm_eval/tasks/leaderboard/bbh_mc/penguins_in_a_table.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
penguins_in_a_table
description
:
'
Answer
questions
about
a
table
of
penguins
and
their
attributes.
'
doc_to_choice
:
[
"
(A)"
,
"
(B)"
,
"
(C)"
,
"
(D)"
,
"
(E)"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
Here
is
a
table
where
the
first
line
is
a
header
and
each
subsequent
line
is
a
penguin:
name,
age,
height
(cm),
weight
(kg)
Louis,
7,
50,
11
Bernard,
5,
80,
13
Vincent,
9,
60,
11
Gwen,
8,
70,
15
For
example:
the
age
of
Louis
is
7,
the
weight
of
Gwen
is
15
kg,
the
height
of
Bernard
is
80
cm.
We
now
add
a
penguin
to
the
table:
James,
12,
90,
12
How
many
penguins
are
less
than
8
years
old?
Options:
(A)
1
(B)
2
(C)
3
(D)
4
(E)
5'
target
:
(B)
-
input
:
'
Here
is
a
table
where
the
first
line
is
a
header
and
each
subsequent
line
is
a
penguin:
name,
age,
height
(cm),
weight
(kg)
Louis,
7,
50,
11
Bernard,
5,
80,
13
Vincent,
9,
60,
11
Gwen,
8,
70,
15
For
example:
the
age
of
Louis
is
7,
the
weight
of
Gwen
is
15
kg,
the
height
of
Bernard
is
80
cm.
Which
is
the
youngest
penguin?
Options:
(A)
Louis
(B)
Bernard
(C)
Vincent
(D)
Gwen
(E)
James'
target
:
(B)
-
input
:
'
Here
is
a
table
where
the
first
line
is
a
header
and
each
subsequent
line
is
a
penguin:
name,
age,
height
(cm),
weight
(kg)
Louis,
7,
50,
11
Bernard,
5,
80,
13
Vincent,
9,
60,
11
Gwen,
8,
70,
15
For
example:
the
age
of
Louis
is
7,
the
weight
of
Gwen
is
15
kg,
the
height
of
Bernard
is
80
cm.
What
is
the
name
of
the
second
penguin
sorted
by
alphabetic
order?
Options:
(A)
Louis
(B)
Bernard
(C)
Vincent
(D)
Gwen
(E)
James'
target
:
(D)
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_penguins_in_a_table
lm_eval/tasks/leaderboard/bbh_mc/reasoning_about_colored_objects.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
reasoning_about_colored_objects
description
:
'
Answer
extremely
simple
questions
about
the
colors
of
objects
on
a
surface.
'
doc_to_choice
:
[
"
(A)"
,
"
(B)"
,
"
(C)"
,
"
(D)"
,
"
(E)"
,
"
(F)"
,
"
(G)"
,
"
(H)"
,
"
(I)"
,
"
(J)"
,
"
(K)"
,
"
(L)"
,
"
(M)"
,
"
(N)"
,
"
(O)"
,
"
(P)"
,
"
(Q)"
,
"
(R)"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
On
the
nightstand,
there
is
a
red
pencil,
a
purple
mug,
a
burgundy
keychain,
a
fuchsia
teddy
bear,
a
black
plate,
and
a
blue
stress
ball.
What
color
is
the
stress
ball?
Options:
(A)
red
(B)
orange
(C)
yellow
(D)
green
(E)
blue
(F)
brown
(G)
magenta
(H)
fuchsia
(I)
mauve
(J)
teal
(K)
turquoise
(L)
burgundy
(M)
silver
(N)
gold
(O)
black
(P)
grey
(Q)
purple
(R)
pink'
target
:
(E)
-
input
:
'
On
the
table,
you
see
a
bunch
of
objects
arranged
in
a
row:
a
purple
paperclip,
a
pink
stress
ball,
a
brown
keychain,
a
green
scrunchiephone
charger,
a
mauve
fidget
spinner,
and
a
burgundy
pen.
What
is
the
color
of
the
object
directly
to
the
right
of
the
stress
ball?
Options:
(A)
red
(B)
orange
(C)
yellow
(D)
green
(E)
blue
(F)
brown
(G)
magenta
(H)
fuchsia
(I)
mauve
(J)
teal
(K)
turquoise
(L)
burgundy
(M)
silver
(N)
gold
(O)
black
(P)
grey
(Q)
purple
(R)
pink'
target
:
(F)
-
input
:
'
On
the
nightstand,
you
see
the
following
items
arranged
in
a
row:
a
teal
plate,
a
burgundy
keychain,
a
yellow
scrunchiephone
charger,
an
orange
mug,
a
pink
notebook,
and
a
grey
cup.
How
many
non-orange
items
do
you
see
to
the
left
of
the
teal
item?
Options:
(A)
zero
(B)
one
(C)
two
(D)
three
(E)
four
(F)
five
(G)
six'
target
:
(A)
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_reasoning_about_colored_objects
lm_eval/tasks/leaderboard/bbh_mc/ruin_names.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
ruin_names
description
:
'
Select
the
humorous
edit
that
'
'
ruins'
'
the
input
movie
or
musical
artist
name.
'
doc_to_choice
:
[
"
(A)"
,
"
(B)"
,
"
(C)"
,
"
(D)"
,
"
(E)"
,
"
(F)"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
Which
of
the
following
is
a
humorous
edit
of
this
artist
or
movie
name:
'
'
whitesnake'
'
?
Options:
(A)
whitesnape
(B)
whitesnapke
(C)
whitesnuake
(D)
mwhitesnake'
target
:
(A)
-
input
:
'
Which
of
the
following
is
a
humorous
edit
of
this
artist
or
movie
name:
'
'
one
of
our
dinosaurs
is
missing'
'
?
Options:
(A)
ofne
of
our
dinosaurs
is
missing
(B)
one
af
our
dinosaurs
is
missing
(C)
one
of
our
dinosaurs
is
pissing
(D)
one
of
our
dinosaur
is
missing'
target
:
(C)
-
input
:
'
Which
of
the
following
is
a
humorous
edit
of
this
artist
or
movie
name:
'
'
counting
crows'
'
?
Options:
(A)
countingy
crows
(B)
counting
cows
(C)
courting
crows
(D)
coutnting
crows'
target
:
(B)
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_ruin_names
lm_eval/tasks/leaderboard/bbh_mc/salient_translation_error_detection.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
salient_translation_error_detection
description
:
'
Detect
the
type
of
error
in
an
English
translation
of
a
German
source
sentence.
'
doc_to_choice
:
[
"
(A)"
,
"
(B)"
,
"
(C)"
,
"
(D)"
,
"
(E)"
,
"
(F)"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
"
The
following
translations
from
German
to
English
contain
a
particular
error.
That
error
will
be
one
of
the
following
types:
Named
Entities:
An
entity
(names,
places,
locations,
etc.)
is
changed
to
a
different
entity.
Numerical
Values:
Numerical
values
(ordinals
or
cardinals),
dates,
and/or
units
are
changed.
Modifiers
or
Adjectives:
The
modifiers
and
adjectives
pertaining
to
a
noun
are
changed.
Negation
or
Antonyms:
Introduce
or
remove
a
negation
or
change
comparatives
to
their
antonyms.
Facts:
Trivial
factual
errors
not
pertaining
to
the
above
classes
are
introduced
in
the
translations.
Dropped
Content:
A
significant
clause
in
the
translation
is
removed.
Please
identify
that
error.
Source:
In
der
Liste
der
Baudenkmale
in
Lenzen
(Elbe)
sind
alle
Baudenkmale
der
brandenburgischen
Stadt
Lenzen
(Elbe)
und
ihrer
Ortsteile
aufgelistet.
Translation:
In
the
list
of
architectural
monuments
in
Lenzen
all
architectural
monuments
of
the
Brandenburg
city
of
Lenzen
and
its
districts
are
listed.
The
translation
contains
an
error
pertaining
to
Options:
(A)
Modifiers
or
Adjectives
(B)
Numerical
Values
(C)
Negation
or
Antonyms
(D)
Named
Entities
(E)
Dropped
Content
(F)
Facts"
target
:
(D)
-
input
:
"
The
following
translations
from
German
to
English
contain
a
particular
error.
That
error
will
be
one
of
the
following
types:
Named
Entities:
An
entity
(names,
places,
locations,
etc.)
is
changed
to
a
different
entity.
Numerical
Values:
Numerical
values
(ordinals
or
cardinals),
dates,
and/or
units
are
changed.
Modifiers
or
Adjectives:
The
modifiers
and
adjectives
pertaining
to
a
noun
are
changed.
Negation
or
Antonyms:
Introduce
or
remove
a
negation
or
change
comparatives
to
their
antonyms.
Facts:
Trivial
factual
errors
not
pertaining
to
the
above
classes
are
introduced
in
the
translations.
Dropped
Content:
A
significant
clause
in
the
translation
is
removed.
Please
identify
that
error.
Source:
Auf
dieser
Seite
sind
die
Baudenkm
\xE4
ler
der
oberbayerischen
Gro
\xDF
en
Kreisstadt
Landsberg
am
Lech
zusammengestellt.
Translation:
On
this
page
are
compiled
the
architectural
monuments
of
the
town
of
Landsberg
am
Lech.
The
translation
contains
an
error
pertaining
to
Options:
(A)
Modifiers
or
Adjectives
(B)
Numerical
Values
(C)
Negation
or
Antonyms
(D)
Named
Entities
(E)
Dropped
Content
(F)
Facts"
target
:
(E)
-
input
:
"
The
following
translations
from
German
to
English
contain
a
particular
error.
That
error
will
be
one
of
the
following
types:
Named
Entities:
An
entity
(names,
places,
locations,
etc.)
is
changed
to
a
different
entity.
Numerical
Values:
Numerical
values
(ordinals
or
cardinals),
dates,
and/or
units
are
changed.
Modifiers
or
Adjectives:
The
modifiers
and
adjectives
pertaining
to
a
noun
are
changed.
Negation
or
Antonyms:
Introduce
or
remove
a
negation
or
change
comparatives
to
their
antonyms.
Facts:
Trivial
factual
errors
not
pertaining
to
the
above
classes
are
introduced
in
the
translations.
Dropped
Content:
A
significant
clause
in
the
translation
is
removed.
Please
identify
that
error.
Source:
\u0141
eba
ist
eine
Kleinstadt
und
ein
Badeort
im
Powiat
L
\u0119
borski
der
polnischen
Woiwodschaft
Pommern.
Translation:
Eba
is
not
a
small
town
and
seaside
resort
in
the
Powiat
L
\xE9
borski
county
of
the
Pomeranian
Voivodeship
of
Poland.
\n
The
translation
contains
an
error
pertaining
to
Options:
(A)
Modifiers
or
Adjectives
(B)
Numerical
Values
(C)
Negation
or
Antonyms
(D)
Named
Entities
(E)
Dropped
Content
(F)
Facts"
target
:
(C)
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_salient_translation_error_detection
lm_eval/tasks/leaderboard/bbh_mc/snarks.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
snarks
description
:
'
Determine
which
of
two
sentences
is
sarcastic.
According
to
Cambridge
University
Dictionary,
sarcasm
is
"the
use
of
remarks
that
clearly
mean
the
opposite
of
what
they
say,
made
in
order
to
hurt
someone'
'
s
feelings
or
to
criticize
something
in
a
humorous
way."
Sarcastic
sentences
often
contain
satirical
or
ironic
utterances,
hyperboles,
ambivalent
or
witty
remarks.
'
doc_to_choice
:
[
"
(A)"
,
"
(B)"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
Which
statement
is
sarcastic?
Options:
(A)
Yes,
because
having
interests
and
actively
researching
them
is
a
huge
waste
(B)
Yes,
because
having
interests
and
actively
researching
them
is
a
huge
deal'
target
:
(A)
-
input
:
'
Which
statement
is
sarcastic?
Options:
(A)
No
one
is
going
to
disagree
with
you
on
this.
Avoiding
ad
hominem
attacks
really
help
your
case
(B)
No
one
is
going
to
disagree
with
you
on
this.
Ad
hominem
attacks
really
help
your
case'
target
:
(B)
-
input
:
'
Which
statement
is
sarcastic?
Options:
(A)
Consistency
in
the
league'
'
s
punishments?
What
do
you
think
this
is
supposed
to
be,
politics?
(B)
Consistency
in
the
league'
'
s
punishments?
What
do
you
think
this
is
supposed
to
be,
moral?'
target
:
(A)
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_snarks
lm_eval/tasks/leaderboard/bbh_mc/sports_understanding.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
sports_understanding
description
:
'
Determine
whether
an
artificially
constructed
sentence
relating
to
sports
is
plausible
or
not.
'
doc_to_choice
:
[
"
yes"
,
"
no"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
Is the following sentence plausible? "Bam Adebayo scored a reverse layup
in the Western Conference Finals."
target
:
'
yes'
-
input
:
Is the following sentence plausible? "Santi Cazorla scored a touchdown."
target
:
'
no'
-
input
:
Is the following sentence plausible? "DeMar DeRozan was called for the
goal tend."
target
:
'
yes'
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_sports_understanding
lm_eval/tasks/leaderboard/bbh_mc/temporal_sequences.yaml
0 → 100644
View file @
a2af2101
dataset_name
:
temporal_sequences
description
:
'
Task
description:
Answer
questions
about
which
times
certain
events
could
have
occurred.
'
doc_to_choice
:
[
"
(A)"
,
"
(B)"
,
"
(C)"
,
"
(D)"
]
fewshot_config
:
sampler
:
first_n
samples
:
-
input
:
'
Today,
Emily
went
to
the
museum.
Between
what
times
could
they
have
gone?
We
know
that:
Emily
woke
up
at
1pm.
Elizabeth
saw
Emily
reading
at
the
library
from
2pm
to
4pm.
Jessica
saw
Emily
watching
a
movie
at
the
theater
from
4pm
to
5pm.
Leslie
saw
Emily
waiting
at
the
airport
from
5pm
to
6pm.
William
saw
Emily
buying
clothes
at
the
mall
from
6pm
to
7pm.
The
museum
was
closed
after
7pm.
Between
what
times
could
Emily
have
gone
to
the
museum?
Options:
(A)
1pm
to
2pm
(B)
6pm
to
7pm
(C)
5pm
to
6pm
(D)
2pm
to
4pm'
target
:
(A)
-
input
:
'
Today,
Elizabeth
went
to
the
amusement
park.
Between
what
times
could
they
have
gone?
We
know
that:
Elizabeth
woke
up
at
7am.
David
saw
Elizabeth
fixing
their
computer
at
the
electronic
store
from
1pm
to
2pm.
Sarah
saw
Elizabeth
playing
tennis
at
the
tennis
court
from
2pm
to
3pm.
Susan
saw
Elizabeth
walking
towards
the
Statue
of
Liberty
from
3pm
to
6pm.
Andrew
saw
Elizabeth
taking
photos
near
the
Eiffel
Tower
from
6pm
to
9pm.
Emily
saw
Elizabeth
getting
a
coffee
at
the
cafe
from
9pm
to
10pm.
The
amusement
park
was
closed
after
10pm.
Between
what
times
could
Elizabeth
have
gone
to
the
amusement
park?
Options:
(A)
7am
to
1pm
(B)
9pm
to
10pm
(C)
1pm
to
2pm
(D)
3pm
to
6pm'
target
:
(A)
-
input
:
'
Today,
Tiffany
went
to
the
beach.
Between
what
times
could
they
have
gone?
We
know
that:
Tiffany
woke
up
at
5am.
Betty
saw
Tiffany
getting
a
coffee
at
the
cafe
from
5am
to
6am.
Jessica
saw
Tiffany
working
at
the
office
from
6am
to
9am.
John
saw
Tiffany
stretching
at
a
yoga
studio
from
9am
to
12pm.
Sean
saw
Tiffany
sitting
on
a
rooftop
from
12pm
to
2pm.
Sarah
saw
Tiffany
playing
tennis
at
the
tennis
court
from
2pm
to
3pm.
The
beach
was
closed
after
4pm.
Between
what
times
could
Tiffany
have
gone
to
the
beach?
Options:
(A)
9am
to
12pm
(B)
12pm
to
2pm
(C)
5am
to
6am
(D)
3pm
to
4pm'
target
:
(D)
include
:
_fewshot_template_yaml
task
:
leaderboard_bbh_temporal_sequences
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